Abstract

Let f : X → R be a convex mapping and X a Hilbert space. In this paper we prove the following refinement of Jensen’s inequality: E ( f | X ∈ A ) ≥ E ( f | X ∈ B ) for every A , B such that E ( X | X ∈ A ) = E ( X | X ∈ B ) and B ⊂ A . Expectations of Hilbert-space-valued random elements are defined by means of the Pettis integrals. Our result generalizes a result of [S. Karlin, A. Novikoff, Generalized convex inequalities, Pacific J. Math. 13 (1963) 1251–1279], who derived it for X = R . The inverse implication is also true if P is an absolutely continuous probability measure. A convexity criterion based on the Jensen-type inequalities follows and we study its asymptotic accuracy when the empirical distribution function based on an n -dimensional sample approximates the unknown distribution function. Some statistical applications are addressed, such as nonparametric estimation and testing for convex regression functions or other functionals.

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